Skip to the main content

Original scientific paper

https://doi.org/10.32985/ijeces.14.6.5

Achieving Information Security by multi-Modal Iris-Retina Biometric Approach Using Improved Mask R-CNN

Mohammed A. Abdel- Latif ; South Valley University, Faculty of Science, Department of Mathematics Qena 63514, Egypt
Mohamed A. El-Sayed ; Taif University, Applied College, Department of Technology Taif 21974, KSA


Full text: english pdf 1.149 Kb

page 657-665

downloads: 325

cite


Abstract

The need for reliable user recognition (identification/authentication) techniques has grown in response to heightened security concerns and accelerated advances in networking, communication, and mobility. Biometrics, defined as the science of recognizing an individual based on his or her physical or behavioral characteristics, is gaining recognition as a method for determining an individual's identity. Various commercial, civilian, and forensic applications now use biometric systems to establish identity. The purpose of this paper is to design an efficient multimodal biometric system based on iris and retinal features to assure accurate human recognition and improve the accuracy of recognition using deep learning techniques. Deep learning models were tested using retinographies and iris images acquired from the MESSIDOR and CASIA-IrisV1 databases for the same person. The Iris region was segmented from the image using the custom Mask R-CNN method, and the unique blood vessels were segmented from retinal images of the same person using principal curvature. Then, in order to aid precise recognition, they optimally extract significant information from the segmented images of the iris and retina. The suggested model attained 98% accuracy, 98.1% recall, and 98.1% precision. It has been discovered that using a custom Mask R-CNN approach on Iris-Retina images improves efficiency and accuracy in person recognition.

Keywords

Biometrics; iris recognition; retina recognition; mask R-CNN;

Hrčak ID:

306065

URI

https://hrcak.srce.hr/306065

Publication date:

12.7.2023.

Visits: 629 *